ConvNeXt / README.md
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library_name: pytorch

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ConvNeXt revisits and modernizes convolutional neural network design by incorporating architectural insights from Vision Transformers, such as large kernels, simplified blocks, and improved normalization, while retaining convolutional efficiency.

Original paper: A ConvNet for the 2020s, Liu et al., 2022

ConvNeXt-T

This model uses the ConvNeXt-Tiny variant, a lightweight configuration that delivers strong accuracy with relatively low computational cost. It is well suited for high-resolution image classification and as a general-purpose backbone for detection and segmentation tasks where CNN efficiency is preferred.

Model Configuration:

Model Device Model Link
ConvNeXt-T N1-655 Model_Link
ConvNeXt-T CV72 Model_Link
ConvNeXt-T CV75 Model_Link